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| "created": "2025-11-18T12:46:12Z", | |
| "updated": "2025-11-18T12:46:12Z", | |
| "description": "Ensemble of 6 fine-tuned DeepLabV3/UNet++/LinkNet models for cloud detection in VGT-1, VGT-2, and PROBA-V imagery. Use load.py for inference.", | |
| "title": "Ensemble Cloud Detection Model (6 Models) - VGT1/VGT2/Proba-V", | |
| "mlm:name": "ensemble_fdr4vgt_cloudmask_ft", | |
| "mlm:architecture": "Ensemble (Mean/Max/Min aggregation) of 6 segmentation models", | |
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| "description": "Cloud present", | |
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| "description": "Per-pixel probability of cloud presence. Built-in sigmoid activation. Values close to 1.0 indicate high confidence of cloud." | |
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| "custom:project": "FDR4VGT", | |
| "custom:project_url": "https://fdr4vgt.eu/", | |
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| "VGT-1", | |
| "VGT-2", | |
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| "custom:sensor_notes": "Model applicable to SPOT-VGT1, SPOT-VGT2, and PROBA-V imagery", | |
| "custom:spatial_resolution": "1km", | |
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| "rel": "about", | |
| "href": "https://fdr4vgt.eu/", | |
| "type": "text/html", | |
| "title": "FDR4VGT Project - Harmonized VGT Data Record" | |
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| "title": "CC-BY-4.0 License" | |
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| "title": "Ensemble model loader", | |
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